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Vascular Tree Segmentation in Medical Images Using Hessian-Based Multiscale Filtering and Level Set Method

机译:基于Hessian的多尺度滤波和水平集方法对医学图像中的血管树进行分割

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摘要

Vascular segmentation plays an important role in medical image analysis. A novel technique for the automatic extraction of vascular trees from 2D medical images is presented, which combines Hessian-based multiscale filtering and a modified level set method. In the proposed algorithm, the morphological top-hat transformation is firstly adopted to attenuate background. Then Hessian-based multiscale filtering is used to enhance vascular structures by combining Hessian matrix with Gaussian convolution to tune the filtering response to the specific scales. Because Gaussian convolution tends to blur vessel boundaries, which makes scale selection inaccurate, an improved level set method is finally proposed to extract vascular structures by introducing an external constrained term related to the standard deviation of Gaussian function into the traditional level set. Our approach was tested on synthetic images with vascular-like structures and 2D slices extracted from real 3D abdomen magnetic resonance angiography (MRA) images along the coronal plane. The segmentation rates for synthetic images are above 95%. The results for MRA images demonstrate that the proposed method can extract most of the vascular structures successfully and accurately in visualization. Therefore, the proposed method is effective for the vascular tree extraction in medical images.
机译:血管分割在医学图像分析中起着重要作用。提出了一种从二维医学图像中自动提取血管树的新技术,该技术结合了基于Hessian的多尺度滤波和改进的水平集方法。在所提出的算法中,首先采用形态学礼帽变换来衰减背景。然后,基于Hessian的多尺度过滤可通过将Hessian矩阵与高斯卷积相结合来增强过滤器的血管结构,从而将过滤响应调整为特定尺度。由于高斯卷积趋于模糊血管边界,这使得尺度选择不准确,最终提出了一种改进的水平集方法,通过将与高斯函数的标准偏差有关的外部约束项引入传统水平集来提取血管结构。我们的方法在具有血管样结构的合成图像上进行了测试,并从冠状平面的真实3D腹部磁共振血管造影(MRA)图像中提取了2D切片。合成图像的分割率高于95%。 MRA图像的结果表明,该方法可以在可视化中成功,准确地提取大多数血管结构。因此,该方法对于医学图像中的血管树提取是有效的。

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